A method for predicting precision of an electrical discharge machine is provided. In the method, plural sets of process data are obtained while the electrical discharge machine processes workpiece samples. process features are established based on the process data. Each of the workpiece samples with respect to each of at least one measurement item is measured by using a metrology tool, thereby obtaining measurement values of the workpiece samples with respect to each measurement item. A correlation analysis operation is performed to obtain correlation coefficients. At least one key feature is selected from the process features as representative according to the correlation coefficients. The measurement values of the workpiece samples with respect to each measurement item, and the sets of process data corresponding to the key features are used to build a predictive model for predicting the precision of the electrical discharge machine.
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1. A method for predicting precision of an electrical discharge machine, the method comprising:
obtaining a plurality of sets of process data while the electrical discharge machine processes a plurality of workpiece samples, wherein each set of the process data comprises a plurality of discharge voltage signals and a plurality of discharge current signals;
establishing a plurality of process features based on the process data;
measuring each of the workpiece samples with respect to each of at least one measurement item by using at least one metrology tool, thereby obtaining a plurality of measurement values of the workpiece samples with respect to each of the at least one measurement item, wherein each of the measurement values is an actual measurement value of one of the workpiece samples after the one of the workpieces is processed by the electrical discharge machine according to its corresponding set of process data;
performing a correlation analysis operation to obtain a plurality of correlation coefficients between the process features of the workpiece samples and the measurement values of the workpiece samples with respect to each of the at least one measurement item;
selecting at least one key feature from the process features as representative according to the correlation coefficients;
using the measurement values of the workpiece samples with respect to each of the measurement items and the sets of process data corresponding to the key features to build a predictive model corresponding to each of the measurement items;
operating the electrical discharge machine to machine a workpiece, and collecting a set of first process data while the electrical discharge machine machines the workpiece; and
converting the set of first process data into a set of input data corresponding to the key feature; and
inputting the set of input data into the predictive model to conjecture a predicted measurement value of the workpiece with respect to one of the at least one measurement item, thereby predicting the precision of the electrical discharge machine.
6. A method for predicting precision of an electrical discharge machine, the method comprising:
obtaining a plurality of sets of process data corresponding to a plurality of workpiece samples while the electrical discharge machine processes the workpiece samples, wherein each set of the process data comprises a plurality of voltage signals and a plurality of current signals;
establishing a plurality of process features based on the process data;
collecting a plurality sets of sample data which correlate to the each of the process features;
performing distribution fitting to each of the sets of the sample data correlating to each of the process features by using a probability distribution fitting method, so as to determine whether an mean value and a standard deviation of each set of the sample data represent each of the process features, thereby obtaining a determination result;
measuring each of the workpiece samples with respect to each of at least one measurement item by using at least one metrology tool, thereby obtaining a plurality of measurement values of the workpiece samples with respect to each of the at least one measurement item, wherein each of the measurement values is an actual measurement value of one of the workpiece samples after the one of the workpiece samples is processed by the electrical discharge machine according to its corresponding set of process data;
performing a correlation analysis operation to obtain a plurality of correlation coefficients between the process features of the workpiece samples and the measurement values of the workpiece samples with respect to each of the at least one measurement item;
selecting at least one key feature from the process features as representative according to the correlation coefficients;
using the measurement values of the workpiece samples with respect to each of the measurement items and the sets of process data corresponding to the key features to build a predictive model corresponding to each of the measurement items;
operating the electrical discharge machine to machine a workpiece, and collecting a set of first process data while the electrical discharge machine machines the workpiece; and
converting the set of first process data into a set of input data corresponding of the key feature; and
inputting the at least one set of input data into the predictive model to conjecture a predicted measurement value of the workpiece with respect to one of the at least one measurement item, thereby predicting the precision of the electrical discharge machine.
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This application claims priority to Taiwan Application Serial Number 105140656, filed on Dec. 8, 2016, and Taiwan Application Serial Number 106138337, filed on Nov. 6, 2017. The entire contents of each of which are incorporated by reference.
The present invention relates to a method for predicting precision of a machine tool. More particularly, the present invention relates to a method for predicting precision of an electrical discharge machine.
Generally, during an operation of an electrical discharge machine, various factors such as poor slag removal, abnormal short circuit, or electrode consumption often result in undesirable size and surface roughness of workpieces, thus leading to poor quality of the workpieces. A conventional electrical discharge machine does not have a function or scheme to predict the production quality of the workpieces during or right after the processing of the workpieces. Instead, the quality of the workpieces can only be measured by using a metrology tool after the workpieces are finished and sent to the metrology tool, which is time-consuming and inefficient.
The amount of process data used to operate the electrical discharge machine to process the workpieces is tremendous. In order to overcome the aforementioned problem that the quality of the workpieces cannot be detected while or right after the workpieces are processed by the electrical discharge machine, key features of the process data used to operate the electrical discharge machine have to be found for building a predictive system.
An object of the invention is to provide a method for predicting precision of an electrical discharge machine, in which plural process features are effectively established from process data of the electrical discharge machine, and key features affecting production quality and precision of the electrical discharge machine are selected from the process features, so as to provide a predictive system for predicting the precision of the electrical discharge machine, thus improving the quality of workpiece by adjusting process data of the electrical discharge machine.
According to the aforementioned object, a method for predicting precision of an electrical discharge machine is provided. The method includes the following operations. At first, plural sets of process data are obtained while the electrical discharge machine processes plural workpiece samples, in which each set of the process data includes plural discharge voltage signals and plural discharge current signals. Thereafter, plural process features are established based on the process data. Then, each of the workpiece samples with respect to each of at least one measurement item is measured by using at least one metrology tool, thereby obtaining plural measurement values of the workpiece samples with respect to each of the at least one measurement item, in which each of the measurement values is an actual measurement value of one of the workpiece samples after the one of the workpieces is processed by the electrical discharge machine according to its corresponding set of process data. Thereafter, a correlation analysis operation is performed to obtain plural correlation coefficients between the process features of the workpiece samples and the measurement values of the workpiece samples with respect to each of the at least one measurement item. Then, at least one key feature is selected from the process features as representative according to the correlation coefficients. Thereafter, the measurement values of the workpiece samples with respect to each of the measurement items and the sets of process data corresponding to the key features are used to build a predictive model corresponding to each of the measurement items. Then, the electrical discharge machine is operated to machine a workpiece, and a set of first process data is collected while the electrical discharge machine machines the workpiece. Thereafter, the set of first process data is converted into a set of input data corresponding to the key feature. Then, the set of input data is put into the predictive model to conjecture a predicted measurement value of the workpiece with respect to one of the at least one measurement item, thereby predicting the precision of the electrical discharge machine.
According to the aforementioned object, another method for predicting precision of an electrical discharge machine is provided. The method includes the following operations. At first, plural sets of process data are obtained while the electrical discharge machine processes plural workpiece samples, in which each set of the process data includes plural discharge voltage signals and a plurality of discharge current signals. Thereafter, plural process features are established based on the process data. Then, plural sets of sample data which correlate to the each of the process features are collected. Thereafter, distribution fitting is performed to each of the sets of the sample data correlating to each of the process features by using a probability fitting method, so as to determine whether a mean value and a standard deviation of each set of the sample data represent each of the process features, thereby obtaining a determination result. Then, each of the workpiece samples with respect to each of at least one measurement item is measured by using at least one metrology tool, thereby obtaining a plurality of measurement values of the workpiece samples with respect to each of the at least one measurement item, in which each of the measurement values is an actual measurement value of one of the workpiece samples after the one of the workpieces is processed by the electrical discharge machine according to its corresponding set of process data. Thereafter, a correlation analysis operation is performed to obtain plural correlation coefficients between the process features of the workpiece samples and the measurement values of the workpiece samples with respect to each of the at least one measurement item. Then, at least one key feature is selected from the process features as representative according to the correlation coefficients. Thereafter, the measurement values of the workpiece samples with respect to each of the measurement items and the sets of process data corresponding to the key features are used to build a predictive model corresponding to each of the measurement items. Then, the electrical discharge machine is operated to machine a workpiece, and a set of first process data is collected while the electrical discharge machine machines the workpiece. Thereafter, the set of first process data is converted into a set of input data corresponding to the key feature. Then, the set of input data is put into the predictive model to conjecture a predicted measurement value of the workpiece with respect to one of the at least one measurement item, thereby predicting the precision of the electrical discharge machine.
It can be known from the above that, the process features are established by using the process data such as the discharge voltage signals and the discharge current signals that are collected from the electrical discharge machine, and the key features are selected from the process features and are provided for building an accurate predictive system to predict the precision of the electrical discharge machine, thereby increasing the processing quality.
On the other hand, the probability fitting method is used to select appropriate data from a huge amount of sample data to represent each of the process features. Meanwhile, the probability fitting method also may be used to reliably determine whether the mean value and the standard deviation of each set of the sample data represent the corresponding process features.
The patent or application file contains at least one drawing executed in color. Copies of this patent or patent application publication with color drawing(s) will be provided by Office upon request and payment of the necessary fee. The invention can be more fully understood by reading the following detailed description of the embodiment, with reference made to the accompanying drawings as follows:
Reference will now be made in detail to the present embodiments of the invention, examples of which are illustrated in the accompanying drawings. Wherever possible, the same reference numbers are used in the drawings and the description to refer to the same or like parts.
Referring to
In one embodiment, the sensing unit 121 is a laser range finding device which is disposed on the main shaft 111. Therefore, the collecting unit 122 can sense the position of the electrode 111a by the laser range finding device to determine whether to collect the process data (i.e. voltage signals and current signals) of the electrical discharge machine 110. For example, the laser range finding device is used to determine whether the main shaft 111 moves in a feeding direction. When the determination result is yes, meaning the main shaft 111 is moving in the feeding direction, the collecting unit 122 will further collect the process data while the electrical discharge machine 110 machines the workpiece samples P1. On the contrary, when the determination result is no, the collecting unit 122 does not have to collect any process data from the electrical discharge machine 110. Therefore, collecting unit 122 can efficiently collect required process data according to the determination result generated from the sensing unit 121. In other embodiments, the sensing unit 121 is an optical scale. In other embodiments, the collecting unit 122 can collect position data of the electrode 111a according to a coordinate position recorded in a controller of the electrical discharge machine 110 to determine whether to collect the process data, thereby collecting the required process data efficiently.
Referring to
Referring to
After the process data of the electrical discharge machine is obtained. An operation 420 is performed to establish plural process features based on the process data. In the present embodiment, the process features can be established by the data fusion technique, and these process features can be used to predict the precision of the electrical discharge machine. Before the process features are established, the discharge voltage waveform and the discharge current waveform shown in
In the present embodiment, the process features includes a spark frequency, an open circuit ratio, a short circuit ratio, an average short circuit time, a standard deviation of short circuit time, an average short circuit current, a standard deviation of short circuit current, an average delay time, a standard deviation of delay time, an average discharge peak current, a standard deviation of peak current, an average discharge duration, a standard deviation of discharge duration, an average discharge energy and a standard deviation of discharge energy.
In the process features, the spark frequency, the average discharge peak current, the standard deviation of peak current, the average discharge duration and the standard deviation of discharge duration are mainly established based on the discharge current signals. The spark frequency represents the total number of sparks occurring during the signal period. Referring to
Referring to
In the process features, the average delay time, the standard deviation of delay time, the short circuit ratio, the average short circuit time and the standard deviation of short circuit time are established based on the discharge voltage signals. Referring to
The short circuit ratio is defined as the number of short circuit pulse divided by the number of the discharge pulse. Referring to
In the process features, the open circuit ratio, the average discharge energy, the standard deviation of discharge energy, the average short circuit current and the standard deviation of short circuit current are established from the discharge current signals and the discharge voltage signals. Referring to
The feature of the average discharge energy relates to the stability and quality of the electrical discharge machining process. The discharge energy Ei of an ith discharge is obtained by equation (1):
Ei=∫0t
where tei represents a duration of the ith discharge, Ui represents a discharge voltage of the ith discharge, and Ipi represents a peak current of the ith discharge.
The short circuit current is defined as an average of the maximum peak current (which exceeds the minimum threshold) and the minimum valley current (which is smaller than the minimum threshold) in a pulse duration. The average short circuit current defined as a mean value of all of the short circuit current in the duration of short circuit occurrence.
Referring to
After obtaining plural sets of sample data which correlate to the each of the process features, an operation 440 is performed to apply distribution fitting to each of the sets of the sample by using a probability fitting method, so as to determine whether an mean value and a standard deviation of each set of the sample data represent each of the process features, thereby obtaining a determination result. In some embodiments, a normal distribution method, a Weibull distribution method, or a Gamma distribution method may be used to perform distribution fitting to each of the sets of the sample to determine whether the set of sample data fits a normal distribution. In some examples, a Probability-Probability plot (P-P plot) and a Quantile-Quantile Plot (Q-Q plot) are used to analysis whether the distribution of the sample data fits an ideal distribution curve. If the determination result is yes, meaning that the mean value and the standard deviation of the set of the sample data can be used to represent a corresponding process feature. Therefore, the distribution fitting is used to select appropriate repressive process features from each of the sets of the sample data. Moreover, the distribution fitting may also be used to validate the reliability of using the mean value and the standard deviation of the set of the sample data to represent the process feature corresponding to the set of the sample data. On the contrary, If the determination result is no, meaning that a correlation analysis step can be omitted thereafter, but the present invention is not limited thereto.
Referring to
Referring to
Referring to
Referring to
Referring to
Referring to
Referring to
Referring to
Referring to
After obtaining the representatives of each of the process features, an operation 450 is performed to measure each of the workpiece samples with respect to each of at least one measurement item by using at least one metrology tool, thereby obtaining plural measurement values of the workpiece samples with respect to each of the at least one measurement item, in which each of the measurement values is an actual measurement value of one of the workpiece samples after the one of the workpiece samples is processed by the electrical discharge machine according to its corresponding set of process data. The present embodiment takes the drilling process as example, the drilling process is performed by using the electrode to form an opening on each of workpiece samples, and each of the openings has a top opening and a bottom opening respectively located on a top surface and a bottom surface of each of the workpiece samples. The measurement item can be a roughness of a bottom surface of the opening, a circularity of the top opening, a diameter of the top opening, a circularity of the bottom opening and/or a diameter of the bottom opening. Each of the measurement items has corresponding measurement values.
After obtaining the measurement values corresponding to each of the measurement items, an operation 460 is performed to perform a correlation analysis operation to obtain a plurality of correlation coefficients between the process features of the workpiece samples and the measurement values of the workpiece samples with respect to each of the at least one measurement item. In one embodiment, an equation (2) below is applied to MATLAB system to determine the relationship between the correlation between the process features of the workpiece samples and the measurement values with respect to each of the at least one measurement item.
where i represents the ith workpiece sample, X represents each of the process features, and Y represents measurement values of each of the measurement items.
After obtaining the correlation coefficients between the process features of the workpiece samples and the measurement values of the workpiece samples with respect to each of the measurement items, an operation 470 is performed to select at least one key feature from the process features as representative according to the correlation coefficients between the process features and the measurement values of each of the measurement items. In one embodiment, when the measurement values are actual measurement values of roughness measured from the bottom surface of the openings on the workpiece samples, the process features with correlation coefficients greater than 0.2 or smaller than −0.2 are listed in the Table 1. Therefore, process features in Table 1 with top five absolute values of correlation coefficients are selected to be used as the key features related to the roughness (measurement item), such as the mean value of average short circuit current, the standard deviation of average short circuit current, the mean value of average delay time, the standard deviation of average delay time and the standard deviation of the average discharge energy.
TABLE 1
correlation coefficients between roughness and the process features
mean value of spark
standard deviation of spark
mean value of open circuit
frequency
frequency
ratio
(−0.25)
(−0.302)
(−0.216)
mean value of short circuit
mean value of average
standard deviation of
time
short circuit current
average short circuit current
(0.287)
(−0.385)
(−0.355)
mean value of average
standard deviation of
mean value of average
delay time
average delay time
discharge peak current
(−0.349)
(−0.395)
(0.272)
standard deviation of
standard deviation of
standard deviation of
average discharge peak
average discharge duration
average discharge energy
current (−0.318)
(−0.219)
(−0.319)
In other embodiments, when the measurement values are actual measurement values of circularities measured from the bottom opening on the workpiece samples, the process features with correlation coefficients greater than 0.2 or smaller than −0.2 are listed in the Table 2. Therefore, process features in Table 2 with top five absolute values of correlation coefficients are selected to be used as the key features related to the circularity of the bottom opening (measurement item), such as the mean value of spark frequency, the standard deviation of spark frequency, the mean value of short circuit ratio, the standard deviation of short circuit ratio and the mean value of average discharge duration.
TABLE 2
correlation coefficients between circularities of the bottom openings
and the process features
mean value of spark
standard deviation of spark
standard deviation of
frequency
frequency
open circuit ratio
(−0.31)
(−0.306)
(0.245)
mean value of short circuit
standard deviation of short
mean value of short
ratio
circuit ratio
circuit time
(−0.333)
(−0.423)
(−0.244)
standard deviation of
standard deviation of average
mean value of average
average short circuit time
delay time
discharge duration
(−0.287)
(−0.289)
(−0.351)
In other embodiments, when the measurement values are actual measurement values of diameters measured from the bottom opening on the workpiece samples, the process features with correlation coefficients greater than 0.2 or smaller than −0.2 are listed in the Table 3. Therefore, process features in Table 3 with top five absolute values of correlation coefficients are selected to be used as the key features related to the diameter of the bottom opening (measurement item), such as the standard deviation of spark frequency, the standard deviation of average short circuit time, the standard deviation of average short circuit current, the standard deviation of average delay time and the mean value of average discharge duration.
TABLE 3
correlation coefficients between diameters of the bottom openings and
the process features
mean value of spark
standard deviation of spark
mean value of open circuit
frequency
frequency
ratio
(0.392)
(0.531)
(0.268)
standard deviation of open
standard deviation of short
standard deviation of
circuit ratio
circuit ratio
average short circuit
(0.223)
(0.345)
time(0.579)
mean value of average short
standard deviation of
mean value of average
circuit current
average short circuit current
delay time
(0.289)
(0.568)
(0.242)
standard deviation of average
mean value of average
standard deviation of
delay time
discharge duration
average discharge duration
(0.399)
(0.581)
(−0.272)
It is noted that selecting the process features with correlation coefficients greater than 0.2 or smaller than −0.2 as the key features is not used to limit the present invention. In other processing conditions, a threshold value of the correlation coefficients can be varied according to different experiment requires to select the process features.
After obtaining the key features corresponding to each of the measurement items, the measurement values of the workpiece samples with respect to each of the measurement items and the sets of process data corresponding to the key features are used to build a predictive model which may be provided to build a predictive model, thereby predicting the precision of the electrical discharge machine. The aforementioned predictive model may be referred to U.S. Pat. No. 8,095,484, entitled “System and method for automatic virtual metrology”, which is incorporated herein by reference.
Referring to
Referring to Table 4, Table 4 shows predictive results of two predictive models built by an automatic virtual metrology system using the key features of the measurement values of the workpiece samples with respect to roughness of a bottom surface of an opening. In the present embodiment, the two predictive models are built respectively according to a Neural Network (NN) algorithm and a Partial Least Square (PLS) algorithm. In Table 4, mean absolutely errors (MAE) of the predictive models based on the NN algorithm and the PLS algorithm are 0.010 um. The 95% max error of the predictive model based on the NN algorithm and the 95% max error of the predictive model based on the PLS algorithm are 0.017 and 0.016 um both of which are smaller than two times of the standard deviation of the actual measurement values (i.e. Actual Y=0.015 um), meaning that the key features, such as the mean value of average short circuit current, the standard deviation of average short circuit current, the mean value of average delay time, the standard deviation of average delay time and the standard deviation of the average discharge energy, can be used to build accurate predictive models respectively according to the NN algorithm and the PLS algorithm for predicting the roughness of the bottom surfaces of the openings.
TABLE 4
predictive results of the roughness of the bottom surfaces of the
openings
MAE
Max Error
95% Max Error
2 * Std.
precision
NN
PLS
NN
PLS
NN
PLS
Actual Y
(um)
0.010
0.010
0.017
0.019
0.017
0.016
0.015
Referring to Table 5, Table 5 shows predictive results of two predictive models built by an automatic virtual metrology system using the key features of the measurement values of the workpiece samples with respect to circularity of a bottom opening of an opening. In the present embodiment, the two predictive models are built respectively according to a Neural Network (NN) algorithm and a Partial Least Square (PLS) algorithm. In Table 5, the MAE of the predictive models based on the NN algorithm and the MAE of the predictive models based on the PLS algorithm are 0.005 and 0.004 um. The 95% max error of the predictive model based on the NN algorithm and the 95% max error of the predictive model based on the PLS algorithm are 0.006 and 0.011 um both of which are smaller than two times of the standard deviation of the actual measurement values (i.e. Actual Y=0.01), meaning that the key features, such as the mean value of spark frequency, the standard deviation of spark frequency, the mean value of short circuit ratio, the standard deviation of short circuit ratio and the mean value of average discharge duration, can be used to build accurate predictive models respectively according to the NN algorithm and the PLS algorithm for predicting the circularities of the bottom openings.
TABLE 5
predictive results of the circularities of the bottom openings
MAE
Max Error
95% Max Error
2 * Std.
precision
NN
PLS
NN
PLS
NN
PLS
Actual Y
(um)
0.005
0.004
0.012
0.012
0.006
0.011
0.010
Referring to Table 6, Table 6 shows predictive results of two predictive models built by an automatic virtual metrology system using the key features of the measurement values of the workpiece samples with respect to diameter of a bottom opening. In the present embodiment, the two predictive models are built respectively according to a Neural Network (NN) algorithm and a Partial Least Square (PLS) algorithm. In Table 6, the MAE of the predictive models based on the NN algorithm and the MAE of the predictive models based on the PLS algorithm are 0.007 and 0.008 um. The 95% max error of the predictive models based on the NN algorithm and the 95% max error of the predictive models based on the PLS algorithm are 0.012 um both of which are smaller than two times of the standard deviation of the actual measurement values (i.e. Actual I Y=0.017), meaning that the key features, such as the standard deviation of spark frequency, the standard deviation of average short circuit time, the standard deviation of average short circuit current, the standard deviation of average delay time and the mean value of average discharge duration, can be used to build accurate predictive models respectively according to the NN algorithm and the PLS algorithm for predicting the diameters of the bottom openings.
TABLE 6
predictive results of the diameters of the bottom openings
MAE
Max Error
95% Max Error
2 * Std.
precision
NN
PLS
NN
PLS
NN
PLS
Actual Y
(um)
0.007
0.006
0.012
0.012
0.011
0.012
0.017
It can be known from the above that, the process features are established by using the process data such as the discharge voltage signals and the discharge current signals that are collected from the electrical discharge machine, and the key features are selected from the process features and are provided for building an accurate predictive system to predict the precision of the electrical discharge machine, thereby increasing the processing quality.
On the other hand, the probability fitting method is used to select appropriate data from a huge amount of sample data to represent each of the process features. Meanwhile, the probability fitting method also may be used to reliably determine whether the mean value and the standard deviation of each set of the sample data represent the corresponding process feature.
Although the present invention has been described in considerable detail with reference to certain embodiments thereof, other embodiments are possible. Therefore, the spirit and scope of the appended claims should not be limited to the description of the embodiments contained herein.
It will be apparent to those skilled in the art that various modifications and variations can be made to the structure of the present invention without departing from the scope or spirit of the invention. In view of the foregoing, it is intended that the present invention cover modifications and variations of this invention provided they fall within the scope of the following claims.
Jan, Chia-Ming, Wu, Wen-Chieh, Chen, Cheng-Yen, Yang, Haw-Ching, Wu, Min-Nan
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